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Unsupervised Text Segmentation Predicts Eye Fixations During Reading
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In: Front Artif Intell (2022)
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Cross-language structural priming in recurrent neural network language models
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In: Proceedings of the Annual Meeting of the Cognitive Science Society, vol 43, iss 43 (2021)
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Is structural priming between different languages a learning effect? Modelling priming as error-driven implicit learning ...
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Is structural priming between different languages a learning effect? Modelling priming as error-driven implicit learning ...
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Semantic sentence similarity: size does not always matter ...
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Cross-language structural priming in recurrent neural network language models ...
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Cross-language structural priming in recurrent neural network language models ...
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The missing-VP effect in readers of English as a second language
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In: Mem Cognit (2021)
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Less is Better: A cognitively inspired unsupervised model for language segmentation ...
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Modelling the structure and dynamics of semantic processing ...
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Lexical representation explains cortical entrainment during speech comprehension
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Judgements about double-embedded relative clauses differ between languages ...
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Lexical representation explains cortical entrainment during speech comprehension ...
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Using stochastic language models (SLM) to map lexical, syntactic, and phonological information processing in the brain ...
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Using stochastic language models to map lexical, syntactical, and phonological information processing in the brain ...
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